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Semantic Frame Induction using Masked Word Embeddings and Two-Step Clustering (2105.13466v1)

Published 27 May 2021 in cs.CL

Abstract: Recent studies on semantic frame induction show that relatively high performance has been achieved by using clustering-based methods with contextualized word embeddings. However, there are two potential drawbacks to these methods: one is that they focus too much on the superficial information of the frame-evoking verb and the other is that they tend to divide the instances of the same verb into too many different frame clusters. To overcome these drawbacks, we propose a semantic frame induction method using masked word embeddings and two-step clustering. Through experiments on the English FrameNet data, we demonstrate that using the masked word embeddings is effective for avoiding too much reliance on the surface information of frame-evoking verbs and that two-step clustering can improve the number of resulting frame clusters for the instances of the same verb.

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Authors (3)
  1. Kosuke Yamada (7 papers)
  2. Ryohei Sasano (24 papers)
  3. Koichi Takeda (21 papers)
Citations (11)

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